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PGANN-FWI for estimating the Marmousi velocity model

In this repository, I implemented the physics-guided neural network (PGNN) for full-waveform inversion. This PGNN can be implemented with or without an attention block. The architecture of their study is shown in the following figure.

architecture

For running the code, you should use this notebook. The required parameters for running this notebook should be set in this config file.

Note: I have commented cell 3 in this notebook, you should run this cell whenever you change an acquisition parameter (and for the first time using the codes).

Note: Please use the requirements file (written in the jupyter file) to install the packages with specified versions to be sure everything works.

pip install -r requirements.txt
In this repo, there are four scripts for running FWI:
1. pinn_fwi.py for performing PGNN- or PGANN-FWI.
2. original_fwi.py for running the conventional FWI (Not available).
3. pinn_for_init.py for performing PINN- or PGANN-FWI to create an initial model and use that to perform the conventional FWI (Not available).
4. pinn_fwi.ipynb for performing PINN- or PGANN-FWI, but this notebook might not be updated.

The result of running this code for 22 shots with 2500 epochs on the Marmousi model is shown in the following figures.

res For a faster convergence (300 epochs), I considered geophones around the model and the results are with_init where the hybrid method is using the PGANN-FWI for creating only the initial model.

Reference:

@inproceedings{mardan2024pgann_eage,
    title = {Physics-guided attention-based neural networks for full-waveform inversion},
    author = {Mardan, Amir and Fabien-Ouellet, Gabriel},
    year = {2024},
    booktitle = {85$^{th}$ {EAGE} Annual Conference \& Exhibition},
    publisher = {European Association of Geoscientists \& Engineers},
    pages = {1-5},
    doi = {}
}